Memory Effects, Multiple Time Scales and Local Stability in Langevin Models of the S&P500 Market Correlation [Gedächtniseffekte, mehrere Zeitskalen und lokale Stabilität in Langevin-Modellen der S&P500-Marktkorrelation]

Wand, Tobias; Heßler, Martin; Kamps, Oliver

Research article (journal) | Peer reviewed

Abstract

The analysis of market correlations is crucial for optimal portfolio selection of correlated assets, but their memory effects have often been neglected. In this work, we analyse the mean market correlation of the S&P500, which corresponds to the main market mode in principle component analysis. We fit a generalised Langevin equation (GLE) to the data whose memory kernel implies that there is a significant memory effect in the market correlation ranging back at least three trading weeks. The memory kernel improves the forecasting accuracy of the GLE compared to models without memory and hence, such a memory effect has to be taken into account for optimal portfolio selection to minimise risk or for predicting future correlations. Moreover, a Bayesian resilience estimation provides further evidence for non-Markovianity in the data and suggests the existence of a hidden slow time scale that operates on much slower times than the observed daily market data. Assuming that such a slow time scale exists, our work supports previous research on the existence of locally stable market states.

Details about the publication

JournalEntropy
Volume2023
Issue25(9)
Article number1257
StatusPublished
Release year2023
Language in which the publication is writtenEnglish
DOI10.3390/e25091257
Link to the full texthttps://doi.org/10.3390/e25091257
KeywordsLangevin equation; econophysics; Bayesian estimation; memory effects; non-Markovian dynamics

Authors from the University of Münster

Heßler, Martin
Center for Nonlinear Science
Kamps, Oliver
Center for Nonlinear Science
Wand, Tobias
Center for Nonlinear Science